Advancing State of Charge Management in Electric Vehicles With Machine Learning: A Technological Review

As the share of electric vehicles increases, electric vehicles are exposed to broader of driving conditions (e.g., extreme weather), which reduce the performance and driving ranges of electric vehicles below their nameplate rating. To ensure customer confidence and support steady growth in electric...

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Main Authors: Arash Mousaei, Yahya Naderi, I. Safak Bayram
Format: Article
Language:English
Published: IEEE 2024-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10474001/
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author Arash Mousaei
Yahya Naderi
I. Safak Bayram
author_facet Arash Mousaei
Yahya Naderi
I. Safak Bayram
author_sort Arash Mousaei
collection DOAJ
description As the share of electric vehicles increases, electric vehicles are exposed to broader of driving conditions (e.g., extreme weather), which reduce the performance and driving ranges of electric vehicles below their nameplate rating. To ensure customer confidence and support steady growth in electric vehicle adoption rates, accurate estimation of battery state of charge and maintaining battery state of health through optimal charge/discharge decisions are critical. Recently, vehicle manufacturers have begun to employ machine learning techniques to improve state-of-charge management to better inform drivers about both the short-term (state of charge) and long-term (state of health) performance of their vehicles. This comprehensive review article explores the intersection of machine learning and state of charge management in electric vehicles. Recognizing the critical importance of the state of charge in optimizing electric vehicle performance, the article starts by evaluating traditional state of charge estimation methods. Subsequently, it delves into the transformative impact of machine learning techniques and associated algorithms on state of charge management. Through the lens of various case studies, this article demonstrates how machine learning-based state of charge estimation empowers electric vehicles to make informed and dynamic energy usage decisions, enhancing efficiency and extending battery life. The challenges of data availability, model interpretability, and real-time processing constraints are acknowledged as impediments to the widespread adoption of machine learning techniques. Despite these challenges, the future outlook for machine learning in the state of charge management appears promising, with emerging trends such as deep learning and reinforcement learning poised to refine the state of charge estimation accuracy. Moreover, this study sheds light on the transformative potential of machine learning in enhancing the state of charge management efficiency and effectiveness for electric vehicles, offering critical insights. Machine learning emerges as a game-changing force in state of charge management for electric vehicles, paving the way for intelligent and adaptive vehicles that are both environmentally friendly and efficient. This evolving field invites further research and development, making it a vital and exciting area within the automotive industry.
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spelling doaj.art-f428e6f38ed848509d0d768944f778762024-03-27T23:00:35ZengIEEEIEEE Access2169-35362024-01-0112432554328310.1109/ACCESS.2024.337852710474001Advancing State of Charge Management in Electric Vehicles With Machine Learning: A Technological ReviewArash Mousaei0https://orcid.org/0000-0003-4983-2476Yahya Naderi1I. Safak Bayram2https://orcid.org/0000-0001-8130-5583Faculty of Electrical and Computer Engineering, University of Tabriz, Tabriz, IranRicardo Plc, Glasgow, U.KDepartment of Electronic and Electrical Engineering, University of Strathclyde, Glasgow, U.KAs the share of electric vehicles increases, electric vehicles are exposed to broader of driving conditions (e.g., extreme weather), which reduce the performance and driving ranges of electric vehicles below their nameplate rating. To ensure customer confidence and support steady growth in electric vehicle adoption rates, accurate estimation of battery state of charge and maintaining battery state of health through optimal charge/discharge decisions are critical. Recently, vehicle manufacturers have begun to employ machine learning techniques to improve state-of-charge management to better inform drivers about both the short-term (state of charge) and long-term (state of health) performance of their vehicles. This comprehensive review article explores the intersection of machine learning and state of charge management in electric vehicles. Recognizing the critical importance of the state of charge in optimizing electric vehicle performance, the article starts by evaluating traditional state of charge estimation methods. Subsequently, it delves into the transformative impact of machine learning techniques and associated algorithms on state of charge management. Through the lens of various case studies, this article demonstrates how machine learning-based state of charge estimation empowers electric vehicles to make informed and dynamic energy usage decisions, enhancing efficiency and extending battery life. The challenges of data availability, model interpretability, and real-time processing constraints are acknowledged as impediments to the widespread adoption of machine learning techniques. Despite these challenges, the future outlook for machine learning in the state of charge management appears promising, with emerging trends such as deep learning and reinforcement learning poised to refine the state of charge estimation accuracy. Moreover, this study sheds light on the transformative potential of machine learning in enhancing the state of charge management efficiency and effectiveness for electric vehicles, offering critical insights. Machine learning emerges as a game-changing force in state of charge management for electric vehicles, paving the way for intelligent and adaptive vehicles that are both environmentally friendly and efficient. This evolving field invites further research and development, making it a vital and exciting area within the automotive industry.https://ieeexplore.ieee.org/document/10474001/Machine learningstate of charge managementelectric vehiclesbattery managementstate of charge estimation order
spellingShingle Arash Mousaei
Yahya Naderi
I. Safak Bayram
Advancing State of Charge Management in Electric Vehicles With Machine Learning: A Technological Review
IEEE Access
Machine learning
state of charge management
electric vehicles
battery management
state of charge estimation order
title Advancing State of Charge Management in Electric Vehicles With Machine Learning: A Technological Review
title_full Advancing State of Charge Management in Electric Vehicles With Machine Learning: A Technological Review
title_fullStr Advancing State of Charge Management in Electric Vehicles With Machine Learning: A Technological Review
title_full_unstemmed Advancing State of Charge Management in Electric Vehicles With Machine Learning: A Technological Review
title_short Advancing State of Charge Management in Electric Vehicles With Machine Learning: A Technological Review
title_sort advancing state of charge management in electric vehicles with machine learning a technological review
topic Machine learning
state of charge management
electric vehicles
battery management
state of charge estimation order
url https://ieeexplore.ieee.org/document/10474001/
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AT yahyanaderi advancingstateofchargemanagementinelectricvehicleswithmachinelearningatechnologicalreview
AT isafakbayram advancingstateofchargemanagementinelectricvehicleswithmachinelearningatechnologicalreview